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Note onset detection in musical signals via neural–network–based multi–ODF fusion

机译:注意通过基于神经网络的多ODF融合来检测音乐信号中的发作

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The problem of note onset detection in musical signals is considered. The proposed solution is based on known approaches in which an onset detection function is defined on the basis of spectral characteristics of audio data. In our approach, several onset detection functions are used simultaneously to form an input vector for a multi-layer non-linear perceptron, which learns to detect onsets in the training data. This is in contrast to standard methods based on thresholding the onset detection functions with a moving average or a moving median. Our approach is also different from most of the current machine-learning-based solutions in that we explicitly use the onset detection functions as an intermediate representation, which may therefore be easily replaced with a different one, e.g., to match the characteristics of a particular audio data source. The results obtained for a database containing annotated onsets for 17 different instruments and ensembles are compared with state-of-the-art solutions.
机译:考虑了音乐信号中音符开始检测的问题。所提出的解决方案基于已知的方法,其中基于音频数据的频谱特性来定义开始检测功能。在我们的方法中,同时使用了几种发作检测功能,以形成多层非线性感知器的输入向量,从而学习检测训练数据中的发作。这与基于使用移动平均值或移动中值对起始检测函数进行阈值处理的标准方法形成对比。我们的方法也不同于大多数当前基于机器学习的解决方案,因为我们明确地将开始检测功能用作中间表示,因此可以轻松地将其替换为其他表示,例如,以匹配特定的特征。音频数据源。将数据库中包含17种不同乐器和乐谱的注释起点的结果与最新解决方案进行比较。

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